Bisociation networks analysis for business process

Bisociation Network (BisoNet) is a novel approach for creative information discovery, and it can be projected to many real application domains. Bisociation of business processes onto a network is one of such applications. In this paper, we investigate business processes on the BisoNet, and develop a directed graph model to map the relations between business process flows. Based on the BisoNet model, we analyze the real-world data provided by a call service centre. The network-based statistics show that some special process steps could be key steps that greatly affect the performance of the service, and could result in a case unsolved. The network is simplified through constructing the network with shortest path of each process flow, and the simplified network may represent an optimal process pattern. This may provide a reference to the business organization for improving the quality of their service.

[1]  William E. Trischler Understanding and Applying Value-Added Assessment: Eliminating Business Process Waste , 1996 .

[2]  Jos B. T. M. Roerdink,et al.  MOVE: A Multi-Level Ontology-Based Visualization and Exploration Framework for Genomic Networks , 2007, Silico Biol..

[3]  Stephen B. Johnson,et al.  Graph theoretic modeling of large-scale semantic networks , 2006, J. Biomed. Informatics.

[4]  Tobias Kötter,et al.  Domain Bridging Associations Support Creativity , 2010, ICCC.

[5]  Xizhao Wang,et al.  Learning fuzzy rules from fuzzy samples based on rough set technique , 2007, Inf. Sci..

[6]  Donald A. Jackson,et al.  Similarity Coefficients: Measures of Co-Occurrence and Association or Simply Measures of Occurrence? , 1989, The American Naturalist.

[7]  Xi-Zhao Wang,et al.  Improving Generalization of Fuzzy IF--THEN Rules by Maximizing Fuzzy Entropy , 2009, IEEE Transactions on Fuzzy Systems.

[8]  Julio J. Castillo A WordNet-based semantic approach to textual entailment and cross-lingual textual entailment , 2011, Int. J. Mach. Learn. Cybern..

[9]  Nada Lavrac,et al.  Bisociative Knowledge Discovery for Microarray Data Analysis , 2010, ICCC.

[10]  Cunhua Li,et al.  Event ontology reasoning based on event class influence factors , 2012, Int. J. Mach. Learn. Cybern..

[11]  Albert-László Barabási,et al.  Statistical mechanics of complex networks , 2001, ArXiv.

[12]  Tina Eliassi-Rad,et al.  Visual Analysis of Large Heterogeneous Social Networks by Semantic and Structural Abstraction , 2006 .

[13]  A. Koestler The Act of Creation , 1964 .

[14]  Tobias Kötter,et al.  Supporting Creativity: Towards Associative Discovery of New Insights , 2008, PAKDD.

[15]  Trevor P. Martin,et al.  Incremental Evolution of Fuzzy Grammar Fragments to Enhance Instance Matching and Text Mining , 2008, IEEE Transactions on Fuzzy Systems.